Position: Data Scientist (Risk strategy, SME)
About The Role
- As Data Scientist in the credit risk strategy team, you will leverage your creative and critical thinking skills to develop best-in-class risk management strategies that have a meaningful impact on the client business.
- These strategies will support the client s credit and fraud risk, customer experience, marketing verticals and beyond.
- Having you aboard will enable us to stay aligned with market trends by improving the turnaround time for developing and implementing risk strategies, allowing for quicker iterations and broader coverage in addressing business challenges through scientific methods.
- The core KPIs for this position include additional revenue generated and costs saved from releases. This role also supports compliance, documentation, and knowledge sharing in risk strategies.
What you'll do
- Develop, validate and deploy risk management strategies using a combination of sophisticated data analytics and domain expertise.
- Extract and explore data, validate data integrity, perform ad hoc analysis, evaluate new data sources for usage in strategy development
- Maintain robust documentation of approach and techniques used; including objectives, assumptions, performance, weaknesses, and limitations.
- Be ready to adapt to new tools/libraries/technologies/platforms.
- Actively partner with engineers to validate & deploy scalable solutions.
- Collaborate to gather insight from partners across the organization.
- Further develop expertise in data science and engineering through self-study, project exposure and guidance of senior team members.
What you'll bring
- Degree in a quantitative field (e.g., computer science, data science, engineering, economics, mathematics, etc.). Advanced degree preferred.
- 3+ years of Data Science experience.
- 2+ years in financial services.
- Experience building and implementing risk strategies in production.
- Deep understanding of segmentation techniques such as decision trees.
- Experience in banking sector with exposure to risk management analytics.
- Proficient with Python.
- Proficient with SQL.
- Practical experience using Spark is a plus.
- Understanding of statistical modeling techniques is a plus.
- Technical understanding of algorithm complexity, probability & statistics.
- Self-driven with an aptitude for independent research & problem-solving.
- Ability to multi-task in a fast-paced environment is essential.
Skills: algorithm complexity,ai/ml,computer science,data conversion,segmentation techniques,spark,risk analytics,data analytics,validate data integrity,statistical modeling,mathematics,python,documentation,sql,statistical modeling techniques,data enrichment,engineering,data science,ad hoc analysis,risk management strategies,decision trees,statistics,fraud risk,credit risk strategy,probability,economics,ai,building and implementing risk strategies,nlp,ml